Mediterranean forest mapping using hyper-spectral satellite imagery
- PDF / 893,038 Bytes
- 16 Pages / 595.276 x 790.866 pts Page_size
- 39 Downloads / 214 Views
ORIGINAL PAPER
Mediterranean forest mapping using hyper-spectral satellite imagery Selma Etteieb & Mounir Louhaichi & Chariton Kalaitzidis & Ioannis Z. Gitas
Received: 20 January 2012 / Accepted: 31 October 2012 # Saudi Society for Geosciences 2012
Abstract Mediterranean forests are characterized by spatiotemporal heterogeneity that is associated with Mediterranean climate, floristic biodiversity and topographic variability. Satellite remote sensing can be an effective tool for characterizing and monitoring forest vegetation distribution within these fragmented Mediterranean landscapes. The heterogeneity of Mediterranean vegetation, however, often exceeds the resolution typical of most satellite sensors. Hyper-spectral remote sensing technology demonstrates the capacity for accurate vegetation identification. The objective of this research is to determine to what extent forest types can be discriminated using different image analysis techniques and spectral band combinations of Hyperion satellite imagery. This research mapped forest types using a pixel-based Spectral Angle Mapper (SAM), nearest neighbour and membership function classifiers of the objectoriented classification. Hyperion classification was done after reducing Hyperion data using nine selected band combinations. Results indicate that the selection of band combination while reducing the Hyperion dataset improves classification results for both the overall and the individual forest type accuracy, in particular for the selected optimum Hyperion band combination. One shortcoming is that the S. Etteieb (*) : C. Kalaitzidis Department of Environmental Management, Mediterranean Agronomic Institute of Chania, Alsyllio Agrokepiou, P.O. Box 85, Chania 73100 Crete, Greece e-mail: [email protected] M. Louhaichi International Center for Agricultural Research in the Dry Areas (ICARDA), P.O. Box 950764, Amman 11195, Jordan I. Z. Gitas Laboratory of Forest Management and Remote Sensing, Faculty of Forestry and Natural Environment, Aristotle University of Thessaloniki, P.O. Box 248, 541 24, Thessaloniki, Greece
performance of the best selected band combination was superior in terms of both overall and individual forest type accuracy when applying the membership classifier of the object-oriented method compared to SAM and nearest neighbour classifiers. However, all techniques seemed to suffer from a number of problems, such as spectral similarity among forest types, overall low energy response of the Hyperion sensor, Hyperion medium spatial resolution and spatiotemporal and spectral heterogeneity of the Mediterranean ecosystem at multiple scales. Keywords Mediterranean forests mapping . Hyperion satellite imagery . Hyperion data reduction . Pixel-based Spectral Angle Mapper (SAM) . Object-oriented classification
Introduction Forests are considered one of the most valuable renewable natural resources because of their economic, environmental, aesthetic and recreational values as well as their critical role in influencing global atmospheric cycles Vanhala et al.
Data Loading...